Patents by Inventor Yuyin Qiu

Yuyin Qiu has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 12100950
    Abstract: Disclosed are a net load forecasting method and apparatus for a new energy electric power market. The method includes: obtaining and performing data preprocessing on new energy output data and external environmental data, and extracting strongly correlated features from the new energy output data and the external environmental data after the data preprocessing; performing feature expansion on the strongly correlated features, and inputting the strongly correlated features after the feature expansion into a preconstructed regression forecasting model, to obtain a first forecast value; obtaining and performing data preprocessing on user load data and load influencing factor data, and inputting the user load data and the load influencing factor data after the data preprocessing into a FNN-LSTM hybrid model, to obtain a second forecast value; and calculating a difference between the second forecast value and the first forecast value, to obtain a net load forecasting result.
    Type: Grant
    Filed: January 14, 2022
    Date of Patent: September 24, 2024
    Assignee: STATE GRID ZHEJIANG ELECTRIC POWER CO., LTD. TAIZHOU POWER SUPPLY COMPANY
    Inventors: Jiandong Si, Feng Guo, Zhijian Yu, Jiahao Zhou, Lintong Wang, Yefeng Luo, Zhouhong Wang, Dongbo Zhang, Yuande Zheng, Yuyin Qiu, Jie Yu, Zihuai Zheng, Lei Hong, Binren Wang, Ying Ren, Yuxi Tu, Huili Xie
  • Publication number: 20240055856
    Abstract: Disclosed are a net load forecasting method and apparatus for a new energy electric power market. The method includes: obtaining and performing data preprocessing on new energy output data and external environmental data, and extracting strongly correlated features from the new energy output data and the external environmental data after the data preprocessing; performing feature expansion on the strongly correlated features, and inputting the strongly correlated features after the feature expansion into a preconstructed regression forecasting model, to obtain a first forecast value; obtaining and performing data preprocessing on user load data and load influencing factor data, and inputting the user load data and the load influencing factor data after the data preprocessing into a FNN-LSTM hybrid model, to obtain a second forecast value; and calculating a difference between the second forecast value and the first forecast value, to obtain a net load forecasting result.
    Type: Application
    Filed: January 14, 2022
    Publication date: February 15, 2024
    Inventors: Jiandong Si, Feng Guo, Zhijian Yu, Jiahao Zhou, Lintong Wang, Yefeng Luo, Zhouhong Wang, Dongbo Zhang, Yuande Zheng, Yuyin Qiu, Jie Yu, Zihuai Zheng, Lei Hong, Binren Wang, Ying Ren, Yuxi Tu, Huili Xie